Tractable Function-Space Variational Inference in Bayesian Neural
Networks
- URL: http://arxiv.org/abs/2312.17199v1
- Date: Thu, 28 Dec 2023 18:33:26 GMT
- Title: Tractable Function-Space Variational Inference in Bayesian Neural
Networks
- Authors: Tim G. J. Rudner, Zonghao Chen, Yee Whye Teh, Yarin Gal
- Abstract summary: A popular approach for estimating the predictive uncertainty of neural networks is to define a prior distribution over the network parameters.
We propose a scalable function-space variational inference method that allows incorporating prior information.
We show that the proposed method leads to state-of-the-art uncertainty estimation and predictive performance on a range of prediction tasks.
- Score: 72.97620734290139
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Reliable predictive uncertainty estimation plays an important role in
enabling the deployment of neural networks to safety-critical settings. A
popular approach for estimating the predictive uncertainty of neural networks
is to define a prior distribution over the network parameters, infer an
approximate posterior distribution, and use it to make stochastic predictions.
However, explicit inference over neural network parameters makes it difficult
to incorporate meaningful prior information about the data-generating process
into the model. In this paper, we pursue an alternative approach. Recognizing
that the primary object of interest in most settings is the distribution over
functions induced by the posterior distribution over neural network parameters,
we frame Bayesian inference in neural networks explicitly as inferring a
posterior distribution over functions and propose a scalable function-space
variational inference method that allows incorporating prior information and
results in reliable predictive uncertainty estimates. We show that the proposed
method leads to state-of-the-art uncertainty estimation and predictive
performance on a range of prediction tasks and demonstrate that it performs
well on a challenging safety-critical medical diagnosis task in which reliable
uncertainty estimation is essential.
Related papers
- Integrating Uncertainty into Neural Network-based Speech Enhancement [27.868722093985006]
Supervised masking approaches in the time-frequency domain aim to employ deep neural networks to estimate a multiplicative mask to extract clean speech.
This leads to a single estimate for each input without any guarantees or measures of reliability.
We study the benefits of modeling uncertainty in clean speech estimation.
arXiv Detail & Related papers (2023-05-15T15:55:12Z) - Neural State-Space Models: Empirical Evaluation of Uncertainty
Quantification [0.0]
This paper presents preliminary results on uncertainty quantification for system identification with neural state-space models.
We frame the learning problem in a Bayesian probabilistic setting and obtain posterior distributions for the neural network's weights and outputs.
Based on the posterior, we construct credible intervals on the outputs and define a surprise index which can effectively diagnose usage of the model in a potentially dangerous out-of-distribution regime.
arXiv Detail & Related papers (2023-04-13T08:57:33Z) - Looking at the posterior: accuracy and uncertainty of neural-network
predictions [0.0]
We show that prediction accuracy depends on both epistemic and aleatoric uncertainty.
We introduce a novel acquisition function that outperforms common uncertainty-based methods.
arXiv Detail & Related papers (2022-11-26T16:13:32Z) - NUQ: Nonparametric Uncertainty Quantification for Deterministic Neural
Networks [151.03112356092575]
We show the principled way to measure the uncertainty of predictions for a classifier based on Nadaraya-Watson's nonparametric estimate of the conditional label distribution.
We demonstrate the strong performance of the method in uncertainty estimation tasks on a variety of real-world image datasets.
arXiv Detail & Related papers (2022-02-07T12:30:45Z) - Dense Uncertainty Estimation [62.23555922631451]
In this paper, we investigate neural networks and uncertainty estimation techniques to achieve both accurate deterministic prediction and reliable uncertainty estimation.
We work on two types of uncertainty estimations solutions, namely ensemble based methods and generative model based methods, and explain their pros and cons while using them in fully/semi/weakly-supervised framework.
arXiv Detail & Related papers (2021-10-13T01:23:48Z) - Multivariate Deep Evidential Regression [77.34726150561087]
A new approach with uncertainty-aware neural networks shows promise over traditional deterministic methods.
We discuss three issues with a proposed solution to extract aleatoric and epistemic uncertainties from regression-based neural networks.
arXiv Detail & Related papers (2021-04-13T12:20:18Z) - Improving Uncertainty Calibration via Prior Augmented Data [56.88185136509654]
Neural networks have proven successful at learning from complex data distributions by acting as universal function approximators.
They are often overconfident in their predictions, which leads to inaccurate and miscalibrated probabilistic predictions.
We propose a solution by seeking out regions of feature space where the model is unjustifiably overconfident, and conditionally raising the entropy of those predictions towards that of the prior distribution of the labels.
arXiv Detail & Related papers (2021-02-22T07:02:37Z) - Unlabelled Data Improves Bayesian Uncertainty Calibration under
Covariate Shift [100.52588638477862]
We develop an approximate Bayesian inference scheme based on posterior regularisation.
We demonstrate the utility of our method in the context of transferring prognostic models of prostate cancer across globally diverse populations.
arXiv Detail & Related papers (2020-06-26T13:50:19Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.